Abstract
In this article we propose a novel Wavelet Packet Decomposition (WPD) -based modification of the classical Principal Component Analysis (PCA)-based face recognition method. The proposed modification allows to use PCA-based face recognition with a large number of training images and perform training much faster than using the traditional PCA-based method. The proposed method was tested with a database containing photographies of 423 persons and achieved 82-89% first one recognition rate. These results are close to that achieved by the classical PCA-based method (83-90%).
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CITATION STYLE
Perlibakas, V. (2004). Face recognition using principal component analysis and wavelet packet decomposition. Informatica, 15(2), 243–250. https://doi.org/10.15388/informatica.2004.057
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